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The Use of Genetic Algorithms for Optimizing the Regularized Solutions of the Ill-Posed Problems

机译:使用遗传算法优化了不良问题的正则化解决方案

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Numerical solution of ill-posed problems is often accomplished by regularization method, such as Tikhonove method, Truncated Singular-value Decomposition (TSVD). Due to large noises condition, those conventional regularization methods cannot provide available solutions for ill-posed problem. Considering that Genetic Algorithms (GA) is a stochastic optimization technique which may be useful for optimizing the regularized solutions. Computing the epicardial potentials from the body surface potentials constitutes one form of the ill-posed inverse problems of electrocardiography (ECG), which is considered as an example to illustrate the performance of GA when applied to optimize the regularized solutions. The result suggests that the GA may be a good scheme for optimizing the regularized solutions in solving the inverse ECG problem.
机译:不良问题的数值解决方案通常是通过正则化方法来实现,例如Tikhonove方法,截短的奇异值分解(TSVD)。由于噪声大,那些传统的正则化方法不能为不良问题提供可用的解决方案。考虑到遗传算法(GA)是一种随机优化技术,可用于优化正则化解决方案。计算来自体表电位的外形电位构成了心电图(ECG)的一种形式的心电图(ECG)的一种形式,其被认为是示例以说明当应用于优化正则化解决方案时的GA的性能。结果表明,GA可以是优化解决逆心电图问题的正则化解决方案的良好方案。

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